cs.AI updates on arXiv.org 07月28日 12:42
Learned Single-Pixel Fluorescence Microscopy
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本文介绍了一种基于自监督学习的单像素成像技术,通过学习编码器和解码器,提高了成像速度和质量,并实现了多光谱成像,为荧光显微镜应用提供新的可能性。

arXiv:2507.18740v1 Announce Type: cross Abstract: Single-pixel imaging has emerged as a key technique in fluorescence microscopy, where fast acquisition and reconstruction are crucial. In this context, images are reconstructed from linearly compressed measurements. In practice, total variation minimisation is still used to reconstruct the image from noisy measurements of the inner product between orthogonal sampling pattern vectors and the original image data. However, data can be leveraged to learn the measurement vectors and the reconstruction process, thereby enhancing compression, reconstruction quality, and speed. We train an autoencoder through self-supervision to learn an encoder (or measurement matrix) and a decoder. We then test it on physically acquired multispectral and intensity data. During acquisition, the learned encoder becomes part of the physical device. Our approach can enhance single-pixel imaging in fluorescence microscopy by reducing reconstruction time by two orders of magnitude, achieving superior image quality, and enabling multispectral reconstructions. Ultimately, learned single-pixel fluorescence microscopy could advance diagnosis and biological research, providing multispectral imaging at a fraction of the cost.

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单像素成像 荧光显微镜 自监督学习 多光谱成像 图像重建
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